Hamiltonicity in random directed graphs is born resilient

R. Montgomery
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引用次数: 13

Abstract

Abstract Let $\{D_M\}_{M\geq 0}$ be the n-vertex random directed graph process, where $D_0$ is the empty directed graph on n vertices, and subsequent directed graphs in the sequence are obtained by the addition of a new directed edge uniformly at random. For each $$\varepsilon > 0$$ , we show that, almost surely, any directed graph $D_M$ with minimum in- and out-degree at least 1 is not only Hamiltonian (as shown by Frieze), but remains Hamiltonian when edges are removed, as long as at most $1/2-\varepsilon$ of both the in- and out-edges incident to each vertex are removed. We say such a directed graph is $(1/2-\varepsilon)$ -resiliently Hamiltonian. Furthermore, for each $\varepsilon > 0$ , we show that, almost surely, each directed graph $D_M$ in the sequence is not $(1/2+\varepsilon)$ -resiliently Hamiltonian. This improves a result of Ferber, Nenadov, Noever, Peter and Škorić who showed, for each $\varepsilon > 0$ , that the binomial random directed graph $D(n,p)$ is almost surely $(1/2-\varepsilon)$ -resiliently Hamiltonian if $p=\omega(\log^8n/n)$ .
随机有向图中的哈密性具有天生的弹性
设$\{D_M\}_{M\geq 0}$为n顶点随机有向图过程,其中$D_0$为n个顶点上的空有向图,序列中后续的有向图都是均匀随机添加一条新的有向边得到的。对于每个$$\varepsilon > 0$$,我们几乎可以肯定地表明,任何最小进出度至少为1的有向图$D_M$不仅是哈密顿的(如Frieze所示),而且当边被移除时仍然是哈密顿的,只要每个顶点的进出边最多$1/2-\varepsilon$被移除。我们说这样的有向图是$(1/2-\varepsilon)$ -弹性哈密顿图。此外,对于每个$\varepsilon > 0$,我们几乎可以肯定地表明,序列中的每个有向图$D_M$都不是$(1/2+\varepsilon)$ -弹性哈密顿量。这改进了Ferber, Nenadov, Noever, Peter和Škorić的结果,他们表明,对于每个$\varepsilon > 0$,二项随机有向图$D(n,p)$几乎肯定是$(1/2-\varepsilon)$ -弹性哈密顿函数如果$p=\omega(\log^8n/n)$。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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